Smart City Gnosys

Smart city article details

Title Cloud And Fog Based Integrated Environment For Load Balancing Using Cuckoo Levy Distribution And Flower Pollination For Smart Homes
ID_Doc 14378
Authors Javaid N.; Butt A.A.; Latif K.; Rehman A.
Year 2019
Published 2019 International Conference on Computer and Information Sciences, ICCIS 2019
DOI http://dx.doi.org/10.1109/ICCISci.2019.8716467
Abstract Reducing delay and latency in cloud computing environment is a challenging task for the research community. There are several smart cities in the world. These smart cities contain numerous Smart Communities (SCs), which have number of Smart Buildings (SBs) and Smart Homes (SHs). They require resources to process and store data in cloud. To overcome these challenges, another infrastructure fog computing environment is introduced, which plays an important role to enhance the efficiency of cloud. The Virtual Machines (VMs) are installed on fog server to whom consumers' requests are allocated. In this paper, the cloud and fog based integrated environment is proposed. To overcome the delay and latency issues of cloud and to enhance the performance of fog. When there are a large number of incoming requests on fog and cloud, load balancing is another major issue. This issue has also been resolved in this paper. The load balancing algorithm Cuckoo search with Levy Walk distribution (CLW) and Flower Pollination (FP) are proposed. The proposed algorithms are compared with existing Cuckoo Search (CS) and BAT algorithm. The comparative analysis of these proposed and existing techniques are performed on the basis of Closest Data Center (CDC), Optimize Response Time (ORT) and Reconfigure Dynamically with Load (RDL). The RT of DCs of cloud and clusters, Processing Time (PT) of fogs is also optimized on the basis of CLW and FP. © 2019 IEEE.
Author Keywords BAT; Cloud Computing; Cuckoo Search; Cuckoo search with Levy Distribution; Flower Pollination; Fog Computing; Load Balancing; Service Broker Policy; Smart Homes


Similar Articles


Id Similarity Authors Title Published
1722 View0.897Singh P.; Kaur R.; Rashid J.; Juneja S.; Dhiman G.; Kim J.; Ouaissa M.A Fog-Cluster Based Load-Balancing TechniqueSustainability (Switzerland), 14, 13 (2022)
4114 View0.88Mahdi R.M.; Hassan H.J.; Abdulsaheb G.M.A Review Load Balancing Algorithms In Fog ComputingBIO Web of Conferences, 97 (2024)
647 View0.879Butt A.A.; Khan S.; Ashfaq T.; Javaid S.; Sattar N.A.; Javaid N.A Cloud And Fog Based Architecture For Energy Management Of Smart City By Using Meta-Heuristic Techniques2019 15th International Wireless Communications and Mobile Computing Conference, IWCMC 2019 (2019)
4499 View0.873Dubey K.; Sharma S.C.; Kumar M.A Secure Iot Applications Allocation Framework For Integrated Fog-Cloud EnvironmentJournal of Grid Computing, 20, 1 (2022)
20661 View0.869Beraldi R.; Canali C.; Lancellotti R.; Mattia G.P.Distributed Load Balancing For Heterogeneous Fog Computing Infrastructures In Smart CitiesPervasive and Mobile Computing, 67 (2020)
40664 View0.863Prasad C.R.; Sandeep Kumar V.; Rao P.R.; Kollem S.; Yalabaka S.; Samala S.Optimization Of Task Offloading For Smart Cities Using Iot With Fog Computing- A Survey2022 International Conference on Signal and Information Processing, IConSIP 2022 (2022)
3954 View0.859Beraldi R.; Canali C.; Lancellotti R.; Mattia G.P.A Random Walk Based Load Balancing Algorithm For Fog Computing2020 5th International Conference on Fog and Mobile Edge Computing, FMEC 2020 (2020)
1522 View0.857Shamsa Z.; Rezaee A.; Adabi S.; Rahimabadi A.M.; Rahmani A.M.A Distributed Load Balancing Method For Iot/Fog/Cloud Environments With Volatile Resource SupportCluster Computing, 27, 4 (2024)
53000 View0.854Jin G.; Huang Z.Statistical Pathways To Low-Carbon Cities: Analyzing Renewable Integration, Energy-Efficient Design, And Job CreationSustainable Cities and Society, 107 (2024)